Title :
A dot product neuron for hardware implementation of competitive networks
Author :
Martin-del-Brío, Bonifacio
Author_Institution :
Tecnologia Electron., Zaragoza Univ., Spain
fDate :
3/1/1996 12:00:00 AM
Abstract :
Competitive models based on a simple dot product neuron often deal with normalized vectors, which adds a hard computational cost. Using Euclidean distance nodes without normalization is only a partial solution, because they are less plausible from a biological point of view and the computational cost of the Euclidean distance is greater than that of the dot product. In this work the author proposes a dot product neuron, formally equivalent to a Euclidean neuron, which does not require vector normalization. The only requirement for such a neuron model is subtracting from the dot product an iteratively computed bias. A simple incremental learning rule for this neuron is also introduced. The proposed model is suitable for hardware implementation of competitive networks
Keywords :
learning (artificial intelligence); self-organising feature maps; Euclidean distance nodes; competitive networks; dot product neuron; hardware implementation; incremental learning rule; Backpropagation; Biological system modeling; Computational efficiency; Euclidean distance; Hardware; Neural networks; Neurons; Self organizing feature maps; US Department of Transportation; Very large scale integration;
Journal_Title :
Neural Networks, IEEE Transactions on